The future of data engineering and data pipelines
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 Published On Sep 29, 2023

Data engineering has become one of the hottest topics in the data space. As companies scale, data pipelines become more complex and the volume of data grows exponentially.

This burgeoning data needs to be stored, processed, and analyzed efficiently to extract meaningful insights that can drive business decisions.

On today's episode, we discuss with Stefan and Elijah from DAGWorks about the future of data pipelines, and AI. DAGWorks is a data pipeline tool built for the forward-thinking data engineering team and is incrementally adoptable.

About Dr Kampakis

Dr Stylianos (Stelios) Kampakis is a data scientist and tokenomics expert with more than 10 years of experience.

He has worked with companies of all sizes: from startups to organisations like the US Navy, Vodafone and British Land. His work expands multiple sectors including fintech, sports analytics, health-tech, general AI, medical statistics, predictive maintenance and others.

He has worked with many different types of technologies, from statistical models, to deep learning, to large language models. He has 2 patents pending to his name, and has published 3 books on data science, AI and data strategy.

He has helped many people follow a career in data science and technology.

His seminal work in token economics has led to many successful token economic designs using tools such as agent based modelling and game theory.

He is a member of the Royal Statistical Society, honorary research fellow at the UCL Centre for Blockchain Technologies, a data science advisor for London Business School and CEO of The Tesseract Academy.

🤖 http://tesseract.academy
🤖 http://thedatascientist.com
🤖 http://beyond-machine.com
🤖   / stelios_thedatascientist  
🤖   / s_kampakis  

#AI #ai #data #datascience #dataanalytics #datanalytics #analytics #artificial_intelligence #bigdata #tokenomics #web3.0 #web3 #blockchain #crypto

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